Intelligent Shopfloor Assistants

Increasing productivity through the use of generative AI

JournalIndustry 4.0 Science
Issue Volume 40, 2024, Edition 6, Pages 64-71
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Abstract

In manufacturing companies, a heterogeneous IT landscape often leads to inefficient work processes due to the high manual effort associated with the use of different, non-integrated digital tools. This article presents the integration of Generative AI in software agents as a promising approach to address this problem. Powerful Large Language Models enable agents to recognize complex tasks in natural language, break them down into subtasks and make decisions autonomously. This improves the flow of information and increases the efficiency of work processes. The article outlines a systematic approach to implementing this technology in companies and discusses the associated technological and ergonomic challenges.

Keywords

Article

In modern production companies, a heterogeneous IT landscape often complicates day-to-day work. A promising antidote is the use of intelligent agents, which use generative AI for routine tasks and can therefore increase efficiency. Whether these intelligent systems can be successfully integrated into existing networks determines whether the flow of information can be improved and manual effort reduced.

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Potentials: Training
Solutions: Production Control Production Planning

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